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Slides and talk assets from PyCon 2017

C 85.91% C++ 1.43% Makefile 1.13% Roff 1.26% M4 0.41% Shell 2.38% Python 0.59% Assembly 3.38% TeX 1.84% DIGITAL Command Language 0.15% Objective-C 0.04% HTML 0.92% CSS 0.11% JavaScript 0.34% Jupyter Notebook 0.11%

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2017-slides's Issues

Tutorial real work about Gaussian process.

Dear everyone.
I am newer using Pymc3. I have a problem need everyone help me. My problem is I have a function F(x,y,z). the variable (x,y,z) has the distribution is Uniform and have the value corresponding to ([0.3;0.6],[0.9;1.1],[45;55]). The first, I keep the Y and Z value in the center position. I conducted experiments with the X value I employ random value of X with 10 samples. I have 10 values of function F.

example: I have x value [ 0.3,0.32,0.35,0.37,0.4,0.43,0.45,0.5,0.55,0.6] then I have corresponding values functions F [0.002,0.0025,0.0024,0.0026,0.0027,0.00278,0.0265,0.0281,0.0286,0.0295]

How to apply Bayesian to my problem?
My target is to find the Mean, variance of the Function value and predict the value of the function when I have the x value.

My future target, don’t keep the value of Y and Z. I find the Mean, variance of the function and predict the value of the function when I do not fix Y, Z which I fix value above.
everyone Who has an idea helps me, please.

sincerely thanks

Hoai Thanh

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